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Automatic video tracking of Chinese mitten crabs based on the particle filter algorithm using a biologically constrained probe and resampling

机译:基于生物约束探针和重采样的粒子滤波算法的中华绒螯蟹视频自动跟踪

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The behavioral patterns of crabs affect the quality and quantity of their production. Currently there are no methods to track behavioral patterns using imaging-based algorithms. This study provides a precise pathway tracking method for the research of the relationship between behavioral patterns of crabs and their living environment. The Particle Filter algorithm is an appropriate framework to handle non-Gaussian movement, the biological constraints are used to decrease the computational complexity and improve the accuracy of tracking the crabs' pathways and a biological probe is utilized to determine the area of movement. Then, this newly determined area replaces the entire image frame as the search space to reduce the complexity of the computation. In the resampling step, a traditional Gaussian particle distribution is substituted by a fusiform particle distribution, which better matches the crab's biological motion patterns, to represent the probability of the crab movement. This strategy allows the crab positions to be covered using fewer particles, which is more accurate for analyzing abrupt motion or long-term stationary situations than traditional particle distributions. To determine the robustness and accuracy of the results, 3000 and 12,000 frames were used, respectively. The coverage ratio and accuracy increased by 28.79% and 5.75%, respectively, compared with the color histogram-based particle filter (CHPF) and by 69.57% and 37.66% compared with the fission bootstrap particle filter (FBPF). The experimental results show that the proposed tracking method is feasible and can be used as an efficient tool to get the pathway of crabs under water
机译:螃蟹的行为方式影响其生产的质量和数量。当前没有使用基于成像的算法来跟踪行为模式的方法。该研究为研究螃蟹的行为方式与其生活环境之间的关系提供了一种精确的路径追踪方法。粒子过滤器算法是处理非高斯运动的合适框架,使用生物学约束来降低计算复杂性并提高跟踪螃蟹路径的准确性,并使用生物学探针确定运动区域。然后,该新确定的区域替换整个图像帧作为搜索空间,以降低计算的复杂性。在重采样步骤中,传统的高斯粒子分布被梭状粒子分布所替代,该形状更好地匹配了螃蟹的生物运动模式,从而代表了螃蟹运动的可能性。这种策略允许使用较少的颗粒覆盖螃蟹的位置,与传统的颗粒分布相比,这种方法对于分析突然运动或长期静止的情况更为准确。为了确定结果的鲁棒性和准确性,分别使用了3000和12,000帧。与基于彩色直方图的粒子过滤器(CHPF)相比,覆盖率和准确性分别提高了28.79%和5.75%,而与裂变自举粒子过滤器(FBPF)相比,覆盖率和准确度提高了69.57%和37.66%。实验结果表明,所提出的跟踪方法是可行的,可作为水下捕蟹途径的有效工具。

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